Improving Identification Performance by Integrating Evidence from Sequences

CVPR(1999)

引用 94|浏览32
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摘要
We present a quantitative evaluation of an algorithm for model-based face recognition. The algorithm actively learns how individual faces vary through video sequences, providing on-line suppression of confounding factors such as expression, lighting and pose. By actively decoupling sources of image variation, the algorithm provides a framework in which identity evidence can be integrated over a sequence. We demonstrate that face recognition can be considerably improved by the analysis of video sequences. The method presented is widely applicable in many multi-class interpretation problems.
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关键词
active appearance model,head,displays,identification,confounding factor,shape,face recognition,robustness,testing,image analysis,active learning
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